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C-Net: A Method for Generating Non-deterministic and Dynamic Multivariate Decision Trees
Author(s) -
Hussein A. Abbass,
Michael Towsey,
G. D. Finn
Publication year - 2001
Publication title -
knowledge and information systems
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.634
H-Index - 76
eISSN - 0219-1377
pISSN - 0219-3116
DOI - 10.1007/pl00011665
Subject(s) - interpretability , decision tree , computer science , univariate , artificial intelligence , machine learning , tree (set theory) , net (polyhedron) , artificial neural network , black box , feature (linguistics) , multivariate statistics , node (physics) , data mining , mathematics , mathematical analysis , linguistics , philosophy , geometry , structural engineering , engineering
Despite the fact that artificial neural networks (ANNs) are universal function approximators, their black box nature (that is, their lack of direct interpretability or expressive power) limits their utility. In contrast, univariate decision trees (UDTs) have expressive power, usually though they are not as accurate as ANNs. We propose an improvement, C-Net, for both the expressiveness of ANNs and the accuracy of UDTs by consolidating both technologies for generating multivariate decision trees (MDTs). In addition, we introduce a new concept, recurrent decision trees, where C-Net uses recurrent neural networks to generate an MDT with a recurrent feature. That is, a memory is associated with each node in the tree with a recursive condition which replaces the conventional linear one. Furthermore, we show empirically that, in our test cases, our\udproposed method achieves a balance of comprehensibility and accuracy intermediate between ANNs and UDTs. MDTs are found to be intermediate since they are more expressive than ANNs and, more accurate than UDTs. Moreover, in all cases MDTs are more compact (i.e. smaller tree size) than UDTs

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